[en] Performance of Landsat 8 OLI and Sentinel 2 MSI Images Based on MNF Versus PCA Algorithms and Convolution Operators for Automatic Lithuanian Coastline Extraction

Type de document

Est une partie de

Mots clés en

Computer Science [cs]/Signal and Image Processing
Environmental Sciences
Humanities and Social Sciences/Geography
Statistics [stat]/Machine Learning [stat.ML]
Coastline Recognition
Lithuania
Minimum Noise Fraction
Principal Component Analysis
Convolution Operators
Spatial statistic
Machine learning
Baltic sea region

Date de publication

Langue du document

Anglais

Editeur

Springer

Résumé

[en] Faced with the increasing coastalization in the world, exposing populations and activities to coastal risks, decision-support tools based on the extraction of coastlines by remote sensing have become essential for measuring coastal dynamics and developing future local planning. However, these tools are constrained by factors such as the choice of data or the extraction methods, etc. which influence the reliability of the data produced. The aim of this study is to evaluate the automatic coastline extraction methods using transformation algorithms and image enhancement operators from Landsat 8 OLI and Sentinel 2 MSI satellite data. The estimates are based on the average distances and the average differences in annual variation rates between the automatically extracted coastlines and the reference coastlines digitised manually from orthophotographs. Additional validation data are used, such as the prediction rate of coastal dynamics, the digitisation rate of the study area and an overall margin of error including georeferencing errors. The results show that coastlines modelled using the Principal Component Analysis transformation method with High Pass and Laplacian image enhancement filters generate the best performances. The good accuracy of coastline recognition with Sentinel 2 MSI satellite images coastline could be related to spatial and spectral resolution factors.

Nom de la revue

SN Computer Science

Collection

Source

HAL

Type de ressource

Notice

Licence

Distributed under a Creative Commons Attribution 4.0 International License

Citation bibliographique

Sébastien Gadal, Thomas Gloaguen. Performance of Landsat 8 OLI and Sentinel 2 MSI Images Based on MNF Versus PCA Algorithms and Convolution Operators for Automatic Lithuanian Coastline Extraction. SN Computer Science, 2024, 5 (308), [10.1007/s42979-024-02623-9]. [hal-04512894]

Citer cette ressource

[en] Performance of Landsat 8 OLI and Sentinel 2 MSI Images Based on MNF Versus PCA Algorithms and Convolution Operators for Automatic Lithuanian Coastline Extraction, dans Études nordiques, consulté le 19 Avril 2025, https://etudes-nordiques.cnrs.fr/s/numenord/item/18165